Assessing wood properties in standing timber with laser scanning

Jiri Pyörälä
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Abstract

Managed forests play crucial roles in ongoing climatic and environmental changes. Among other things, wood is capable of sinking and storing carbon in both standing timber and wood products. To promote these positive effects, more precise planning is required that will ensure sustainable forest management and maximal deposition of harvested wood for long-term applications. Information on wood properties plays a key role; i.e. the wood properties can impact the carbon stocks in forests and the suitability of wood for structural timber. With respect to the theoretical background of wood formation, stem, crown, and branching constitute potential inputs (i.e. wood quality indicators) to allometric wood property, tree biomass, and wood quality models. Due to the complex nature of wood formation, measurements of wood quality indicators that could predict wood properties along the relevant directions of variation have previously been elusive in forest inventories. However, developments in laser scanning from aerial and terrestrial platforms support more complex mapping and modeling regimes based on dense three-dimensional point clouds. The aim here was to determine how wood properties could be estimated in remotesensing-aided forest inventories. For this purpose, methods for characterizing select wood quality indicators in standing timber, using airborne and terrestrial laser scanning (ALS and TLS, respectively) were developed and evaluated in managed boreal Scots pine (Pinus sylvestris L.) forests. Firstly, the accuracies of wood quality indicators resolved from TLS point clouds were assessed. Secondly, the results were compared with x-ray tomographic references from sawmills. Thirdly, the accuracies of tree-specific crown features delineated from the ALS data in predictive modeling of the wood quality indicators were evaluated. The results showed that the quality and density of point clouds significantly impacted the accuracies of the extracted wood quality indicators. In the assessment of wood properties, TLS should be considered as a tool for retrieving as dense stem and branching data as possible from carefully selected sample trees. Accurately retrieved morphological data could be applied to allometric wood property models. The models should use tree traits predictable with aerial remote sensing (e.g. tree height, crown dimensions) to enable extrapolations. As an outlook, terrestrial and aerial remote sensing can play an important role in filling in the knowledge gaps regarding the behavior of wood properties over different spatial and temporal extents. Further interdisciplinary cooperation will be needed to fully facilitate the use of remote sensing and spatially transferable wood property models that could become useful in tackling the challenges associated with changing climate, silviculture, and demand for wood.
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用激光扫描评估直立木材的木材特性
经营森林在持续的气候和环境变化中发挥着至关重要的作用。除此之外,木材能够在直立木材和木制品中下沉和储存碳。为了促进这些积极影响,需要更精确的规划,以确保可持续的森林管理和最大限度地沉积采伐的木材以供长期使用。关于木材特性的信息起着关键作用;也就是说,木材的性质可以影响森林中的碳储量和木材对结构木材的适用性。关于木材形成的理论背景,茎、冠和分枝构成了异速木材特性、树木生物量和木材质量模型的潜在输入(即木材质量指标)。由于木材形成的复杂性,木材质量指标的测量可以沿着相关的变化方向预测木材的性质,以前在森林清查中是难以捉摸的。然而,从空中和地面平台的激光扫描的发展支持基于密集三维点云的更复杂的制图和建模制度。这里的目的是确定如何在遥感辅助森林清查中估计木材的性质。为此,在管理的北方苏格兰松林(Pinus sylvestris L.)中开发了利用机载和地面激光扫描(分别为ALS和TLS)表征立木中精选木材质量指标的方法并进行了评估。首先,对从TLS点云中提取的木材质量指标的精度进行了评估。其次,将结果与锯木厂的x射线层析成像参考文献进行了比较。第三,评价了ALS数据在木材质量指标预测建模中所描绘的树冠特征的准确性。结果表明,点云的质量和密度显著影响提取木材质量指标的精度。在评估木材性能时,TLS应被视为一种工具,用于从精心挑选的样本树木中检索尽可能密集的茎和分支数据。准确检索到的形态学数据可以应用于异速木材特性模型。模型应使用可通过航空遥感预测的树木特征(例如树高、树冠尺寸)来进行外推。展望未来,陆地和航空遥感可以在填补关于木材性质在不同时空范围内的行为的知识空白方面发挥重要作用。将需要进一步的跨学科合作,以充分促进利用遥感和空间上可转移的木材属性模型,这些模型可能有助于应对与气候变化、造林和木材需求有关的挑战。
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